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A Probabilistic MajorClust Variant for the Clustering of Near-Homogeneous Graphs

机译:用于近乎均质图形聚类的概率大型晶粒变体

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Clustering remains a major topic in machine learning; it is used e.g. for document categorization, for data mining, and for image analysis. In all these application areas, clustering algorithms try to identify groups of related data in large data sets. In this paper, the established clustering algorithm MAJORCLUST ([12]) is improved; making it applicable to data sets with few structure on the local scale -so called near-homogeneous graphs. This new algorithm MCPROB is verified empirically using the problem of image clustering. Furthermore, MCPROB is analyzed theoretically. For the applications examined so-far, MCPROB outperforms other established clustering techniques.
机译:聚类仍然是机器学习中的主要话题;它是使用的。对于文档分类,用于数据挖掘,以及用于图像分析。在所有这些应用领域中,聚类算法尝试在大数据集中识别相关数据组。在本文中,提高了已建立的聚类算法马弗条([12]);使其适用于局部级别少量结构的数据集 - 所谓的近乎均匀图。此新算法McProb使用图像聚类问题验证验证。此外,理论上分析McProb。对于所审查的应用,McProb优于其他已建立的聚类技术。

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